Performance of a large language model-Artificial Intelligence based chatbot for counseling patients with sexually transmitted infections and genital diseases
Nikhil Mehta, Sithira Ambepitiya, Thanveer Ahamad, Dinuka Wijesundara,, Yudara Kularathne

TL;DR
This study introduces Otiz, an AI chatbot tailored for STI counseling, demonstrating high accuracy, empathy, and comprehensibility in simulated patient interactions, potentially easing healthcare burdens.
Contribution
Otiz is a novel AI-based chatbot specifically designed for STI detection and counseling, utilizing advanced LLM and multi-agent architecture for accurate and empathetic responses.
Findings
High diagnostic accuracy scores (4.1-4.7) for STIs
Strong inter-observer agreement in evaluations
Lower relevance scores indicating some redundancy
Abstract
Introduction: Global burden of sexually transmitted infections (STIs) is rising out of proportion to specialists. Current chatbots like ChatGPT are not tailored for handling STI-related concerns out of the box. We developed Otiz, an Artificial Intelligence-based (AI-based) chatbot platform designed specifically for STI detection and counseling, and assessed its performance. Methods: Otiz employs a multi-agent system architecture based on GPT4-0613, leveraging large language model (LLM) and Deterministic Finite Automaton principles to provide contextually relevant, medically accurate, and empathetic responses. Its components include modules for general STI information, emotional recognition, Acute Stress Disorder detection, and psychotherapy. A question suggestion agent operates in parallel. Four STIs (anogenital warts, herpes, syphilis, urethritis/cervicitis) and 2 non-STIs…
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education
